Use of delay and sum for sparse reconstruction improvement for structural health monitoring

Journal Article (2019)
Author(s)

A. Nokhbatolfoghahai (TU Delft - Structural Integrity & Composites, Sharif University of Technology)

Hossein M. Navazi (Sharif University of Technology)

R.M. Groves (TU Delft - Structural Integrity & Composites)

Research Group
Structural Integrity & Composites
Copyright
© 2019 A. Nokhbatolfoghahai, Hossein M. Navazi, R.M. Groves
DOI related publication
https://doi.org/10.1177/1045389X19873415
More Info
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Publication Year
2019
Language
English
Copyright
© 2019 A. Nokhbatolfoghahai, Hossein M. Navazi, R.M. Groves
Research Group
Structural Integrity & Composites
Issue number
18-19
Volume number
30
Pages (from-to)
2919-2931
Reuse Rights

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Abstract

To perform active structural health monitoring, guided Lamb waves for damage detection have recently gained extensive attention. Many algorithms are used for damage detection with guided waves and among them, the delay-and-sum method is the most commonly used algorithm because of its robustness and simplicity. However, delay-and-sum images tend to have poor accuracy with a large spot size and a high noise floor, especially in the presence of multiple damages. To overcome these problems, another method that is based on sparse reconstruction can be used. Although the images produced by the sparse reconstruction method are superior to the conventional delay-and-sum method, it has the challenges of the time and cost of computations in comparison with the delay-and-sum method. Also, in some cases in multi-damage detection, the sparse reconstruction method totally fails. In this article, using prior support information of the structure achieved by the delay-and-sum method, a hybrid method based on sparse reconstruction method is proposed to improve the computational performance and robustness of sparse reconstruction method in the case of multi-damage presence. The effectiveness of the proposed method in detecting damages is demonstrated experimentally and numerically on a simple aluminum plate. The technique is also shown to accurately identify and localize multi-site damages as well as single damage with low sampled signals.

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